Literature DB >> 26357042

Unfold High-Dimensional Clouds for Exhaustive Gating of Flow Cytometry Data.

Peng Qiu.   

Abstract

Flow cytometry is able to measure the expressions of multiple proteins simultaneously at the single-cell level. A flow cytometry experiment on one biological sample provides measurements of several protein markers on or inside a large number of individual cells in that sample. Analysis of such data often aims to identify subpopulations of cells with distinct phenotypes. Currently, the most widely used analytical approach in the flow cytometry community is manual gating on a sequence of nested biaxial plots, which is highly subjective, labor intensive, and not exhaustive. To address those issues, a number of methods have been developed to automate the gating analysis by clustering algorithms. However, completely removing the subjectivity can be quite challenging. This paper describes an alternative approach. Instead of automating the analysis, we develop novel visualizations to facilitate manual gating. The proposed method views single-cell data of one biological sample as a high-dimensional point cloud of cells, derives the skeleton of the cloud, and unfolds the skeleton to generate 2D visualizations. We demonstrate the utility of the proposed visualization using real data, and provide quantitative comparison to visualizations generated from principal component analysis and multidimensional scaling.

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Year:  2014        PMID: 26357042      PMCID: PMC4866872          DOI: 10.1109/TCBB.2014.2321403

Source DB:  PubMed          Journal:  IEEE/ACM Trans Comput Biol Bioinform        ISSN: 1545-5963            Impact factor:   3.710


  23 in total

1.  Rapid cell population identification in flow cytometry data.

Authors:  Nima Aghaeepour; Radina Nikolic; Holger H Hoos; Ryan R Brinkman
Journal:  Cytometry A       Date:  2011-01       Impact factor: 4.355

2.  Hematopoietic stem cells: the paradigmatic tissue-specific stem cell.

Authors:  David Bryder; Derrick J Rossi; Irving L Weissman
Journal:  Am J Pathol       Date:  2006-08       Impact factor: 4.307

3.  Automated gating of flow cytometry data via robust model-based clustering.

Authors:  Kenneth Lo; Ryan Remy Brinkman; Raphael Gottardo
Journal:  Cytometry A       Date:  2008-04       Impact factor: 4.355

4.  Automated high-dimensional flow cytometric data analysis.

Authors:  Saumyadipta Pyne; Xinli Hu; Kui Wang; Elizabeth Rossin; Tsung-I Lin; Lisa M Maier; Clare Baecher-Allan; Geoffrey J McLachlan; Pablo Tamayo; David A Hafler; Philip L De Jager; Jill P Mesirov
Journal:  Proc Natl Acad Sci U S A       Date:  2009-05-14       Impact factor: 11.205

5.  Mixture modeling approach to flow cytometry data.

Authors:  Michael J Boedigheimer; John Ferbas
Journal:  Cytometry A       Date:  2008-05       Impact factor: 4.355

6.  Cytometry by time-of-flight shows combinatorial cytokine expression and virus-specific cell niches within a continuum of CD8+ T cell phenotypes.

Authors:  Evan W Newell; Natalia Sigal; Sean C Bendall; Garry P Nolan; Mark M Davis
Journal:  Immunity       Date:  2012-01-27       Impact factor: 31.745

7.  Mass cytometry: technique for real time single cell multitarget immunoassay based on inductively coupled plasma time-of-flight mass spectrometry.

Authors:  Dmitry R Bandura; Vladimir I Baranov; Olga I Ornatsky; Alexei Antonov; Robert Kinach; Xudong Lou; Serguei Pavlov; Sergey Vorobiev; John E Dick; Scott D Tanner
Journal:  Anal Chem       Date:  2009-08-15       Impact factor: 6.986

8.  Data reduction for spectral clustering to analyze high throughput flow cytometry data.

Authors:  Habil Zare; Parisa Shooshtari; Arvind Gupta; Ryan R Brinkman
Journal:  BMC Bioinformatics       Date:  2010-07-28       Impact factor: 3.169

9.  flowCore: a Bioconductor package for high throughput flow cytometry.

Authors:  Florian Hahne; Nolwenn LeMeur; Ryan R Brinkman; Byron Ellis; Perry Haaland; Deepayan Sarkar; Josef Spidlen; Errol Strain; Robert Gentleman
Journal:  BMC Bioinformatics       Date:  2009-04-09       Impact factor: 3.169

10.  Trustworthiness and metrics in visualizing similarity of gene expression.

Authors:  Samuel Kaski; Janne Nikkilä; Merja Oja; Jarkko Venna; Petri Törönen; Eero Castrén
Journal:  BMC Bioinformatics       Date:  2003-10-13       Impact factor: 3.169

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